2021
DOI: 10.48550/arxiv.2107.13312
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Effective Eigendecomposition based Graph Adaptation for Heterophilic Networks

Abstract: Graph Neural Networks (GNNs) exhibit excellent performance when graphs have strong homophily property, i.e. connected nodes have the same labels. However, they perform poorly on heterophilic graphs. Several approaches address the issue of heterophily by proposing models that adapt the graph by optimizing task-specific loss function using labelled data. These adaptations are made either via attention or by attenuating or enhancing various low-frequency/high-frequency signals, as needed for the task at hand. Mor… Show more

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